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Boundary Delineation of Agricultural Fields in Multitemporal Satellite Imagery

机译:多时相卫星影像中农田的边界描绘

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Agricultural land-use statistics are more informative per-field than per-pixel. Land-use classification requires up-to-date field boundary maps potentially covering large areas containing thousands of farms. This kind of map is usually difficult to obtain. We have developed a new, automated method for deriving closed polygons around fields fromtime-series satellite imagery. We have been using this method operationally in New Zealand to map whole districts using imagery from several satellite sensors, with little need to vary parameters. Our method looks for boundaries-either step edges or linear features-surrounding regions of low variability throughout the time series. Local standard deviations from all image dates are combined, and the result is convolved with a series of extended directional edge filters. We propose that edge linearity over a long distance is a more important criterion than spectral difference for separating fields, so edge responses are thresholded primarily by length rather than strength. The resulting raster edge map (combined from all directions) is converted to vector (GIS) format and the final polygon topology is built. The method successfully segments parcels containing different crops and pasture, as well as those separated by boundaries such as roads and hedgerows. Here we describe the technique and demonstrate it for an agricultural study site (4000 km(2)) using SPOT satellite imagery. We show that our result compares favorably with that from existing segmentation methods in terms of both quantitative quality metrics and suitability for land-use classification.
机译:农业土地利用统计资料的每个字段比每个像素提供的信息更多。土地用途分类需要最新的田间边界图,可能会覆盖包含数千个农场的大区域。这种地图通常很难获得。我们已经开发了一种新的自动化方法,可以从时间序列卫星图像中得出围绕区域的闭合多边形。在新西兰,我们一直在使用这种方法来操作,使用来自多个卫星传感器的图像来绘制整个区域的地图,而无需更改参数。我们的方法在整个时间序列中寻找低变异性的边界(步阶边缘或线性特征)。合并所有图像日期的局部标准差,然后将结果与一系列扩展的定向边缘滤镜进行卷积。我们提出,长距离的边缘线性度是比光谱差异更重要的标准,用于分离场,因此边缘响应主要受长度而非强度的限制。生成的栅格边缘贴图(从各个方向组合)将转换为矢量(GIS)格式,并构建最终的多边形拓扑。该方法成功地分割了包含不同农作物和牧场以及被边界(例如道路和树篱)分隔的地块。在这里,我们描述了该技术,并使用SPOT卫星图像对一个农业研究站点(4000 km(2))进行了演示。我们显示,就定量质量指标和土地利用分类的适用性而言,我们的结果与现有分割方法相比具有优势。

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